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Quantifying California Current Plankton Samples with Efficient Machine Learning Techniques

机译:量化加利福尼亚州目前的Plankton样本,具有高效的机器学习技术

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摘要

This paper improves on the accuracy of other published machine learning results for quantifying plankton samples. The contributions of this work are: (1) Clarifying the number of expertly labeled images required for machine learning results. (2) Providing guidance as to what algorithms provide the best performance, and how to tune them. (3) Leveraging an ensemble of models to achieve recall rates beyond any single algorithm. (4) Investigating the applicability of abstaining. (5) Using size fractionation to learn more efficiently. (6) Analysis of efficacy of simple geometric features for plankton identification.
机译:本文提高了其他公布机器学习结果的准确性,用于量化浮游生物样本。这项工作的贡献是:(1)澄清机器学习结果所需的专业标记图像数量。 (2)为算法提供最佳性能的指导,以及如何调整它们。 (3)利用模型的集合来实现超出任何单一算法的召回率。 (4)调查弃权的适用性。 (5)使用大小分馏更有效地学习。 (6)分析浮游生物鉴定的简单几何特征的功效。

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